This is a wrapper for the FactoMineR::MFA function for computing MFA.
Usage
mfa(X, type = rep("c", length(X)), graph = FALSE, ...)
Value
multiblock object including relevant scores and loadings. Relevant plotting functions: multiblock_plots
and result functions: multiblock_results.
Arguments
X
list of input blocks.
type
character vector indicating block types, defaults to rep("c", length(X)) for continuous values.
graph
logical indicating if decomposition should be plotted.
...
additional arguments for RGCCA approach.
Details
MFA is a methods typically used to compare several equally sized matrices. It is
often used in sensory analyses, where matrices consist of sensory characteristics and products,
and each assessor generates one matrix each. In its basic form, MFA scales all matrices by their
largest eigenvalue, concatenates them and performs PCA on the result. There are several
possibilities for plots and inspections of the model, handling of categorical and continuous
inputs etc. connected to MFA.
References
Pagès, J. (2005). Collection and analysis of perceived product inter-distances using multiple factor analysis: Application to the study of 10 white wines from the Loire valley. Food Quality and Preference, 16(7), 642–649.
See Also
Overviews of available methods, multiblock, and methods organised by main structure: basic, unsupervised, asca, supervised and complex.
Common functions for computation and extraction of results and plotting are found in multiblock_results and multiblock_plots, respectively.